Machine-learning based noise characterization and correction on neutral atoms NISQ devices
Ettore Canonici, Stefano Martina, Riccardo Mengoni, Daniele Ottaviani,, Filippo Caruso

TL;DR
This paper presents machine learning techniques to characterize and correct noise in neutral atom NISQ devices, specifically Pasqal rubidium atom systems, aiming to improve quantum computation accuracy.
Contribution
It introduces ML models for noise parameter prediction and a reinforcement learning framework for noise correction in neutral atom quantum devices.
Findings
ML models accurately predict noise parameters from quantum state measurements
Analysis of scaling effects on noise prediction accuracy
Comparison of ML predicted parameters with a priori estimates
Abstract
Neutral atoms devices represent a promising technology that uses optical tweezers to geometrically arrange atoms and modulated laser pulses to control the quantum states. A neutral atoms Noisy Intermediate Scale Quantum (NISQ) device is developed by Pasqal with rubidium atoms that will allow to work with up to 100 qubits. All NISQ devices are affected by noise that have an impact on the computations results. Therefore it is important to better understand and characterize the noise sources and possibly to correct them. Here, two approaches are proposed to characterize and correct noise parameters on neutral atoms NISQ devices. In particular the focus is on Pasqal devices and Machine Learning (ML) techniques are adopted to pursue those objectives. To characterize the noise parameters, several ML models are trained, using as input only the measurements of the final quantum state of the…
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Taxonomy
TopicsCold Atom Physics and Bose-Einstein Condensates · Quantum Information and Cryptography
MethodsFocus
